| | import warnings |
| | import numpy as np |
| | from scipy.sparse import csc_array, vstack, issparse |
| | from scipy._lib._util import VisibleDeprecationWarning |
| | from ._highs._highs_wrapper import _highs_wrapper |
| | from ._constraints import LinearConstraint, Bounds |
| | from ._optimize import OptimizeResult |
| | from ._linprog_highs import _highs_to_scipy_status_message |
| |
|
| |
|
| | def _constraints_to_components(constraints): |
| | """ |
| | Convert sequence of constraints to a single set of components A, b_l, b_u. |
| | |
| | `constraints` could be |
| | |
| | 1. A LinearConstraint |
| | 2. A tuple representing a LinearConstraint |
| | 3. An invalid object |
| | 4. A sequence of composed entirely of objects of type 1/2 |
| | 5. A sequence containing at least one object of type 3 |
| | |
| | We want to accept 1, 2, and 4 and reject 3 and 5. |
| | """ |
| | message = ("`constraints` (or each element within `constraints`) must be " |
| | "convertible into an instance of " |
| | "`scipy.optimize.LinearConstraint`.") |
| | As = [] |
| | b_ls = [] |
| | b_us = [] |
| |
|
| | |
| | if isinstance(constraints, LinearConstraint): |
| | constraints = [constraints] |
| | else: |
| | |
| | try: |
| | iter(constraints) |
| | except TypeError as exc: |
| | raise ValueError(message) from exc |
| |
|
| | |
| | if len(constraints) == 3: |
| | |
| | try: |
| | constraints = [LinearConstraint(*constraints)] |
| | except (TypeError, ValueError, VisibleDeprecationWarning): |
| | |
| | pass |
| |
|
| | |
| | for constraint in constraints: |
| | |
| | |
| | if not isinstance(constraint, LinearConstraint): |
| | try: |
| | constraint = LinearConstraint(*constraint) |
| | except TypeError as exc: |
| | raise ValueError(message) from exc |
| | As.append(csc_array(constraint.A)) |
| | b_ls.append(np.atleast_1d(constraint.lb).astype(np.float64)) |
| | b_us.append(np.atleast_1d(constraint.ub).astype(np.float64)) |
| |
|
| | if len(As) > 1: |
| | A = vstack(As, format="csc") |
| | b_l = np.concatenate(b_ls) |
| | b_u = np.concatenate(b_us) |
| | else: |
| | A = As[0] |
| | b_l = b_ls[0] |
| | b_u = b_us[0] |
| |
|
| | return A, b_l, b_u |
| |
|
| |
|
| | def _milp_iv(c, integrality, bounds, constraints, options): |
| | |
| | if issparse(c): |
| | raise ValueError("`c` must be a dense array.") |
| | c = np.atleast_1d(c).astype(np.float64) |
| | if c.ndim != 1 or c.size == 0 or not np.all(np.isfinite(c)): |
| | message = ("`c` must be a one-dimensional array of finite numbers " |
| | "with at least one element.") |
| | raise ValueError(message) |
| |
|
| | |
| | if issparse(integrality): |
| | raise ValueError("`integrality` must be a dense array.") |
| | message = ("`integrality` must contain integers 0-3 and be broadcastable " |
| | "to `c.shape`.") |
| | if integrality is None: |
| | integrality = 0 |
| | try: |
| | integrality = np.broadcast_to(integrality, c.shape).astype(np.uint8) |
| | except ValueError: |
| | raise ValueError(message) |
| | if integrality.min() < 0 or integrality.max() > 3: |
| | raise ValueError(message) |
| |
|
| | |
| | if bounds is None: |
| | bounds = Bounds(0, np.inf) |
| | elif not isinstance(bounds, Bounds): |
| | message = ("`bounds` must be convertible into an instance of " |
| | "`scipy.optimize.Bounds`.") |
| | try: |
| | bounds = Bounds(*bounds) |
| | except TypeError as exc: |
| | raise ValueError(message) from exc |
| |
|
| | try: |
| | lb = np.broadcast_to(bounds.lb, c.shape).astype(np.float64) |
| | ub = np.broadcast_to(bounds.ub, c.shape).astype(np.float64) |
| | except (ValueError, TypeError) as exc: |
| | message = ("`bounds.lb` and `bounds.ub` must contain reals and " |
| | "be broadcastable to `c.shape`.") |
| | raise ValueError(message) from exc |
| |
|
| | |
| | if not constraints: |
| | constraints = [LinearConstraint(np.empty((0, c.size)), |
| | np.empty((0,)), np.empty((0,)))] |
| | try: |
| | A, b_l, b_u = _constraints_to_components(constraints) |
| | except ValueError as exc: |
| | message = ("`constraints` (or each element within `constraints`) must " |
| | "be convertible into an instance of " |
| | "`scipy.optimize.LinearConstraint`.") |
| | raise ValueError(message) from exc |
| |
|
| | if A.shape != (b_l.size, c.size): |
| | message = "The shape of `A` must be (len(b_l), len(c))." |
| | raise ValueError(message) |
| | indptr, indices, data = A.indptr, A.indices, A.data.astype(np.float64) |
| |
|
| | |
| | options = options or {} |
| | supported_options = {'disp', 'presolve', 'time_limit', 'node_limit', |
| | 'mip_rel_gap'} |
| | unsupported_options = set(options).difference(supported_options) |
| | if unsupported_options: |
| | message = (f"Unrecognized options detected: {unsupported_options}. " |
| | "These will be passed to HiGHS verbatim.") |
| | warnings.warn(message, RuntimeWarning, stacklevel=3) |
| | options_iv = {'log_to_console': options.pop("disp", False), |
| | 'mip_max_nodes': options.pop("node_limit", None)} |
| | options_iv.update(options) |
| |
|
| | return c, integrality, lb, ub, indptr, indices, data, b_l, b_u, options_iv |
| |
|
| |
|
| | def milp(c, *, integrality=None, bounds=None, constraints=None, options=None): |
| | r""" |
| | Mixed-integer linear programming |
| | |
| | Solves problems of the following form: |
| | |
| | .. math:: |
| | |
| | \min_x \ & c^T x \\ |
| | \mbox{such that} \ & b_l \leq A x \leq b_u,\\ |
| | & l \leq x \leq u, \\ |
| | & x_i \in \mathbb{Z}, i \in X_i |
| | |
| | where :math:`x` is a vector of decision variables; |
| | :math:`c`, :math:`b_l`, :math:`b_u`, :math:`l`, and :math:`u` are vectors; |
| | :math:`A` is a matrix, and :math:`X_i` is the set of indices of |
| | decision variables that must be integral. (In this context, a |
| | variable that can assume only integer values is said to be "integral"; |
| | it has an "integrality" constraint.) |
| | |
| | Alternatively, that's: |
| | |
| | minimize:: |
| | |
| | c @ x |
| | |
| | such that:: |
| | |
| | b_l <= A @ x <= b_u |
| | l <= x <= u |
| | Specified elements of x must be integers |
| | |
| | By default, ``l = 0`` and ``u = np.inf`` unless specified with |
| | ``bounds``. |
| | |
| | Parameters |
| | ---------- |
| | c : 1D dense array_like |
| | The coefficients of the linear objective function to be minimized. |
| | `c` is converted to a double precision array before the problem is |
| | solved. |
| | integrality : 1D dense array_like, optional |
| | Indicates the type of integrality constraint on each decision variable. |
| | |
| | ``0`` : Continuous variable; no integrality constraint. |
| | |
| | ``1`` : Integer variable; decision variable must be an integer |
| | within `bounds`. |
| | |
| | ``2`` : Semi-continuous variable; decision variable must be within |
| | `bounds` or take value ``0``. |
| | |
| | ``3`` : Semi-integer variable; decision variable must be an integer |
| | within `bounds` or take value ``0``. |
| | |
| | By default, all variables are continuous. `integrality` is converted |
| | to an array of integers before the problem is solved. |
| | |
| | bounds : scipy.optimize.Bounds, optional |
| | Bounds on the decision variables. Lower and upper bounds are converted |
| | to double precision arrays before the problem is solved. The |
| | ``keep_feasible`` parameter of the `Bounds` object is ignored. If |
| | not specified, all decision variables are constrained to be |
| | non-negative. |
| | constraints : sequence of scipy.optimize.LinearConstraint, optional |
| | Linear constraints of the optimization problem. Arguments may be |
| | one of the following: |
| | |
| | 1. A single `LinearConstraint` object |
| | 2. A single tuple that can be converted to a `LinearConstraint` object |
| | as ``LinearConstraint(*constraints)`` |
| | 3. A sequence composed entirely of objects of type 1. and 2. |
| | |
| | Before the problem is solved, all values are converted to double |
| | precision, and the matrices of constraint coefficients are converted to |
| | instances of `scipy.sparse.csc_array`. The ``keep_feasible`` parameter |
| | of `LinearConstraint` objects is ignored. |
| | options : dict, optional |
| | A dictionary of solver options. The following keys are recognized. |
| | |
| | disp : bool (default: ``False``) |
| | Set to ``True`` if indicators of optimization status are to be |
| | printed to the console during optimization. |
| | node_limit : int, optional |
| | The maximum number of nodes (linear program relaxations) to solve |
| | before stopping. Default is no maximum number of nodes. |
| | presolve : bool (default: ``True``) |
| | Presolve attempts to identify trivial infeasibilities, |
| | identify trivial unboundedness, and simplify the problem before |
| | sending it to the main solver. |
| | time_limit : float, optional |
| | The maximum number of seconds allotted to solve the problem. |
| | Default is no time limit. |
| | mip_rel_gap : float, optional |
| | Termination criterion for MIP solver: solver will terminate when |
| | the gap between the primal objective value and the dual objective |
| | bound, scaled by the primal objective value, is <= mip_rel_gap. |
| | |
| | Returns |
| | ------- |
| | res : OptimizeResult |
| | An instance of :class:`scipy.optimize.OptimizeResult`. The object |
| | is guaranteed to have the following attributes. |
| | |
| | status : int |
| | An integer representing the exit status of the algorithm. |
| | |
| | ``0`` : Optimal solution found. |
| | |
| | ``1`` : Iteration or time limit reached. |
| | |
| | ``2`` : Problem is infeasible. |
| | |
| | ``3`` : Problem is unbounded. |
| | |
| | ``4`` : Other; see message for details. |
| | |
| | success : bool |
| | ``True`` when an optimal solution is found and ``False`` otherwise. |
| | |
| | message : str |
| | A string descriptor of the exit status of the algorithm. |
| | |
| | The following attributes will also be present, but the values may be |
| | ``None``, depending on the solution status. |
| | |
| | x : ndarray |
| | The values of the decision variables that minimize the |
| | objective function while satisfying the constraints. |
| | fun : float |
| | The optimal value of the objective function ``c @ x``. |
| | mip_node_count : int |
| | The number of subproblems or "nodes" solved by the MILP solver. |
| | mip_dual_bound : float |
| | The MILP solver's final estimate of the lower bound on the optimal |
| | solution. |
| | mip_gap : float |
| | The difference between the primal objective value and the dual |
| | objective bound, scaled by the primal objective value. |
| | |
| | Notes |
| | ----- |
| | `milp` is a wrapper of the HiGHS linear optimization software [1]_. The |
| | algorithm is deterministic, and it typically finds the global optimum of |
| | moderately challenging mixed-integer linear programs (when it exists). |
| | |
| | References |
| | ---------- |
| | .. [1] Huangfu, Q., Galabova, I., Feldmeier, M., and Hall, J. A. J. |
| | "HiGHS - high performance software for linear optimization." |
| | https://highs.dev/ |
| | .. [2] Huangfu, Q. and Hall, J. A. J. "Parallelizing the dual revised |
| | simplex method." Mathematical Programming Computation, 10 (1), |
| | 119-142, 2018. DOI: 10.1007/s12532-017-0130-5 |
| | |
| | Examples |
| | -------- |
| | Consider the problem at |
| | https://en.wikipedia.org/wiki/Integer_programming#Example, which is |
| | expressed as a maximization problem of two variables. Since `milp` requires |
| | that the problem be expressed as a minimization problem, the objective |
| | function coefficients on the decision variables are: |
| | |
| | >>> import numpy as np |
| | >>> c = -np.array([0, 1]) |
| | |
| | Note the negative sign: we maximize the original objective function |
| | by minimizing the negative of the objective function. |
| | |
| | We collect the coefficients of the constraints into arrays like: |
| | |
| | >>> A = np.array([[-1, 1], [3, 2], [2, 3]]) |
| | >>> b_u = np.array([1, 12, 12]) |
| | >>> b_l = np.full_like(b_u, -np.inf, dtype=float) |
| | |
| | Because there is no lower limit on these constraints, we have defined a |
| | variable ``b_l`` full of values representing negative infinity. This may |
| | be unfamiliar to users of `scipy.optimize.linprog`, which only accepts |
| | "less than" (or "upper bound") inequality constraints of the form |
| | ``A_ub @ x <= b_u``. By accepting both ``b_l`` and ``b_u`` of constraints |
| | ``b_l <= A_ub @ x <= b_u``, `milp` makes it easy to specify "greater than" |
| | inequality constraints, "less than" inequality constraints, and equality |
| | constraints concisely. |
| | |
| | These arrays are collected into a single `LinearConstraint` object like: |
| | |
| | >>> from scipy.optimize import LinearConstraint |
| | >>> constraints = LinearConstraint(A, b_l, b_u) |
| | |
| | The non-negativity bounds on the decision variables are enforced by |
| | default, so we do not need to provide an argument for `bounds`. |
| | |
| | Finally, the problem states that both decision variables must be integers: |
| | |
| | >>> integrality = np.ones_like(c) |
| | |
| | We solve the problem like: |
| | |
| | >>> from scipy.optimize import milp |
| | >>> res = milp(c=c, constraints=constraints, integrality=integrality) |
| | >>> res.x |
| | [2.0, 2.0] |
| | |
| | Note that had we solved the relaxed problem (without integrality |
| | constraints): |
| | |
| | >>> res = milp(c=c, constraints=constraints) # OR: |
| | >>> # from scipy.optimize import linprog; res = linprog(c, A, b_u) |
| | >>> res.x |
| | [1.8, 2.8] |
| | |
| | we would not have obtained the correct solution by rounding to the nearest |
| | integers. |
| | |
| | Other examples are given :ref:`in the tutorial <tutorial-optimize_milp>`. |
| | |
| | """ |
| | args_iv = _milp_iv(c, integrality, bounds, constraints, options) |
| | c, integrality, lb, ub, indptr, indices, data, b_l, b_u, options = args_iv |
| |
|
| | highs_res = _highs_wrapper(c, indptr, indices, data, b_l, b_u, |
| | lb, ub, integrality, options) |
| |
|
| | res = {} |
| |
|
| | |
| | highs_status = highs_res.get('status', None) |
| | highs_message = highs_res.get('message', None) |
| | status, message = _highs_to_scipy_status_message(highs_status, |
| | highs_message) |
| | res['status'] = status |
| | res['message'] = message |
| | res['success'] = (status == 0) |
| | x = highs_res.get('x', None) |
| | res['x'] = np.array(x) if x is not None else None |
| | res['fun'] = highs_res.get('fun', None) |
| | res['mip_node_count'] = highs_res.get('mip_node_count', None) |
| | res['mip_dual_bound'] = highs_res.get('mip_dual_bound', None) |
| | res['mip_gap'] = highs_res.get('mip_gap', None) |
| |
|
| | return OptimizeResult(res) |
| |
|